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Generative adversarial network for geological prediction based on TBM operational data

机译:基于TBM运行数据的地质预测生成对抗网络

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摘要

The prediction of tunnel geological conditions plays an important role in underground engineering, such as the tunnel construction and tunnel dynamic design. However, due to the invisibility of underground geological conditions, there remain many challenges in the design of geological prediction models. In this paper, we propose a generative adversarial network for geological prediction (GAN-GP) to accurately estimate the thickness of each rock-soil type in a tunnel boring machine (TBM) construction tunnel based on operational data collected from sensors equipped on the TBM. The generator of the GAN-GP contains feature-extraction (FE) and feature-integration (FI) modules. The former extracts the important features from the TBM operational data, and the latter produces the geological condition prediction, which estimates the thickness of each rock-soil type at a location. The discriminator of the GAN-GP determines whether the FI module's outputs are true geological data. After adversarial training, if the trained discriminator fails to distinguish them, the outputs of the FI module will accurately approximate the true geological condition. Experimental results support the effectiveness of the proposed GAN-GP model for geological prediction, and show that it outperforms the state-of-the-art models including support vector regression (SVR), feed-forward neural network (FNN) and random forest (RF) models.
机译:隧道地质条件的预测在地下工程中起着重要作用,例如隧道施工和隧道动态设计。然而,由于地下地质条件的隐形,地质预测模型的设计存在许多挑战。在本文中,我们提出了一种用于地质预测(GaN-GP)的生成对抗性网络,以准确地估计基于从装备在TBM上的传感器收集的操作数据的隧道钻孔机(TBM)构造隧道中的每个凿岩土型的厚度。 GaN-GP的生成器包含特征提取(FE)和功能集成(FI)模块。前者从TBM操作数据中提取重要特征,后者产生地质条件预测,其估计每个岩土类型在位置处的厚度。 GaN-GP的鉴别器确定了FI模块的输出是真实的地质数据。在逆势训练之后,如果训练有素的鉴别者未能区分它们,则FI模块的输出将准确地近似真实的地质条件。实验结果支持提议的GaN-GP模型对地质预测模型的有效性,并表明它优于最先进的模型,包括支持向量回归(SVR),前馈神经网络(FNN)和随机林( rf)模型。

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